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Underspecifying and Predicting Voice for Surface Realisation Ranking

机译:强调和预测表面实现排名的声音

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This paper addresses a data-driven surface realisation model based on a large-scale reversible grammar of German. We investigate the relationship between the surface realisation performance and the character of the input to generation, i.e. its degree of underspec-ification. We extend a syntactic surface realisation system, which can be trained to choose among word order variants, such that the candidate set includes active and passive variants. This allows us to study the interaction of voice and word order alternations in realistic German corpus data. We show that with an appropriately underspecified input, a linguistically informed realisation model trained to regenerate strings from the underlying semantic representation achieves 91.5% accuracy (over a baseline of 82.5%) in the prediction of the original voice.
机译:本文根据德国大规模可逆语法,解决了数据驱动的表面实现模型。我们研究了表面实现性能与输入的字符之间的关系,即其underspec-ification的程度。我们扩展了一个句法表面实现系统,可以训练,以便在Word Order变型中选择,使得候选集包括主动和被动变体。这使我们能够研究熟练的德语语料库数据中的语音和单词订单交替的交互。我们认为,通过适当的强度输入,培训的语言上通知的实现模型以从底层语义表示从底层语义中的再生字符串实现了91.5%的准确性(在原始声音的预测中的准确度(在82.5%的基线上)。

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